Feng Huanhuan, Zhang Mengjie, Liu Pengfei, Liu Yiliu, Zhang Xiaoshuan
College of Engineering, China Agricultural University, Beijing 100083, China.
Beijing Laboratory of Food Quality and Safety, China Agricultural University, Beijing 100083, China.
Foods. 2020 Oct 30;9(11):1579. doi: 10.3390/foods9111579.
Salmon is a highly perishable food due to temperature, pH, odor, and texture changes during cold storage. Intelligent monitoring and spoilage rapid detection are effective approaches to improve freshness. The aim of this work was an evaluation of IoT-enabled monitoring system (IoTMS) and electronic nose spoilage detection for quality parameters changes and freshness under cold storage conditions. The salmon samples were analyzed and divided into three groups in an incubator set at 0 °C, 4 °C, and 6 °C. The quality parameters, i.e., texture, color, sensory, and pH changes, were measured and evaluated at different temperatures after 0, 3, 6, 9, 12, and 14 days of cold storage. The principal component analysis (PCA) algorithm can be used to cluster electronic nose information. Furthermore, a Convolutional Neural Networks and Support Vector Machine (CNN-SVM) based algorithm is used to cluster the freshness level of salmon samples stored in a specific storage condition. In the tested samples, the results show that the training dataset of freshness is about 95.6%, and the accuracy rate of the test dataset is 93.8%. For the training dataset of corruption, the accuracy rate is about 91.4%, and the accuracy rate of the test dataset is 90.5%. The overall accuracy rate is more than 90%. This work could help to reduce quality loss during salmon cold storage.
由于在冷藏过程中温度、pH值、气味和质地会发生变化,三文鱼是一种极易腐坏的食物。智能监测和变质快速检测是提高新鲜度的有效方法。这项工作的目的是评估物联网监测系统(IoTMS)和电子鼻变质检测在冷藏条件下对质量参数变化和新鲜度的影响。将三文鱼样本在设置为0°C、4°C和6°C的培养箱中进行分析并分为三组。在冷藏0、3、6、9、12和14天后,在不同温度下测量并评估质量参数,即质地、颜色、感官和pH值的变化。主成分分析(PCA)算法可用于对电子鼻信息进行聚类。此外,基于卷积神经网络和支持向量机(CNN-SVM)的算法用于对存储在特定存储条件下的三文鱼样本的新鲜度水平进行聚类。在测试样本中,结果表明新鲜度训练数据集约为95.6%,测试数据集的准确率为93.8%。对于腐败训练数据集,准确率约为91.4%,测试数据集的准确率为90.5%。总体准确率超过90%。这项工作有助于减少三文鱼冷藏期间的质量损失。